import logging
from concurrent import futures
import gc
import grpc
import base64
from collections import defaultdict
import functools
import queue
import pickle

import threading
from typing import Any
from typing import Dict
from typing import Set
from typing import Optional
from typing import Callable
from typing import Union
from ray import cloudpickle
from ray.job_config import JobConfig
import ray
import ray.state
import ray.core.generated.ray_client_pb2 as ray_client_pb2
import ray.core.generated.ray_client_pb2_grpc as ray_client_pb2_grpc
import time
import inspect
import json
from ray.util.client.common import (
    ClientServerHandle,
    GRPC_OPTIONS,
    CLIENT_SERVER_MAX_THREADS,
    ResponseCache,
)
from ray import ray_constants
from ray.util.client.server.proxier import serve_proxier
from ray.util.client.server.server_pickler import convert_from_arg
from ray.util.client.server.server_pickler import dumps_from_server
from ray.util.client.server.server_pickler import loads_from_client
from ray.util.client.server.dataservicer import DataServicer
from ray.util.client.server.logservicer import LogstreamServicer
from ray.util.client.server.server_stubs import current_server
from ray.ray_constants import env_integer
from ray._private.client_mode_hook import disable_client_hook
from ray._private.ray_logging import setup_logger
from ray._private.services import canonicalize_bootstrap_address
from ray._private.tls_utils import add_port_to_grpc_server
from ray._private.gcs_utils import use_gcs_for_bootstrap, GcsClient

logger = logging.getLogger(__name__)

TIMEOUT_FOR_SPECIFIC_SERVER_S = env_integer("TIMEOUT_FOR_SPECIFIC_SERVER_S", 30)


def _use_response_cache(func):
    """
    Decorator for gRPC stubs. Before calling the real stubs, checks if there's
    an existing entry in the caches. If there is, then return the cached
    entry. Otherwise, call the real function and use the real cache
    """

    @functools.wraps(func)
    def wrapper(self, request, context):
        metadata = {k: v for k, v in context.invocation_metadata()}
        expected_ids = ("client_id", "thread_id", "req_id")
        if any(i not in metadata for i in expected_ids):
            # Missing IDs, skip caching and call underlying stub directly
            return func(self, request, context)

        # Get relevant IDs to check cache
        client_id = metadata["client_id"]
        thread_id = metadata["thread_id"]
        req_id = int(metadata["req_id"])

        # Check if response already cached
        response_cache = self.response_caches[client_id]
        cached_entry = response_cache.check_cache(thread_id, req_id)
        if cached_entry is not None:
            if isinstance(cached_entry, Exception):
                # Original call errored, propogate error
                context.set_code(grpc.StatusCode.FAILED_PRECONDITION)
                context.set_details(str(cached_entry))
                raise cached_entry
            return cached_entry

        try:
            # Response wasn't cached, call underlying stub and cache result
            resp = func(self, request, context)
        except Exception as e:
            # Unexpected error in underlying stub -- update cache and
            # propagate to user through context
            response_cache.update_cache(thread_id, req_id, e)
            context.set_code(grpc.StatusCode.FAILED_PRECONDITION)
            context.set_details(str(e))
            raise
        response_cache.update_cache(thread_id, req_id, resp)
        return resp

    return wrapper


class RayletServicer(ray_client_pb2_grpc.RayletDriverServicer):
    def __init__(self, ray_connect_handler: Callable):
        """Construct a raylet service

        Args:
           ray_connect_handler (Callable): Function to connect to ray cluster
        """
        # Stores client_id -> (ref_id -> ObjectRef)
        self.object_refs: Dict[str, Dict[bytes, ray.ObjectRef]] = defaultdict(dict)
        # Stores client_id -> (client_ref_id -> ref_id (in self.object_refs))
        self.client_side_ref_map: Dict[str, Dict[bytes, bytes]] = defaultdict(dict)
        self.function_refs = {}
        self.actor_refs: Dict[bytes, ray.ActorHandle] = {}
        self.actor_owners: Dict[str, Set[bytes]] = defaultdict(set)
        self.registered_actor_classes = {}
        self.named_actors = set()
        self.state_lock = threading.Lock()
        self.ray_connect_handler = ray_connect_handler
        self.response_caches: Dict[str, ResponseCache] = defaultdict(ResponseCache)

    def Init(
        self, request: ray_client_pb2.InitRequest, context=None
    ) -> ray_client_pb2.InitResponse:
        if request.job_config:
            job_config = pickle.loads(request.job_config)
            job_config.client_job = True
        else:
            job_config = None
        current_job_config = None
        with disable_client_hook():
            if ray.is_initialized():
                worker = ray.worker.global_worker
                current_job_config = worker.core_worker.get_job_config()
            else:
                extra_kwargs = json.loads(request.ray_init_kwargs or "{}")
                try:
                    self.ray_connect_handler(job_config, **extra_kwargs)
                except Exception as e:
                    logger.exception("Running Ray Init failed:")
                    return ray_client_pb2.InitResponse(
                        ok=False,
                        msg="Call to `ray.init()` on the server " f"failed with: {e}",
                    )
        if job_config is None:
            return ray_client_pb2.InitResponse(ok=True)

        # NOTE(edoakes): this code should not be necessary anymore because we
        # only allow a single client/job per server. There is an existing test
        # that tests the behavior of multiple clients with the same job config
        # connecting to one server (test_client_init.py::test_num_clients),
        # so I'm leaving it here for now.
        job_config = job_config.get_proto_job_config()
        # If the server has been initialized, we need to compare whether the
        # runtime env is compatible.
        if (
            current_job_config
            and set(job_config.runtime_env_info.uris)
            != set(current_job_config.runtime_env_info.uris)
            and len(job_config.runtime_env_info.uris) > 0
        ):
            return ray_client_pb2.InitResponse(
                ok=False,
                msg="Runtime environment doesn't match "
                f"request one {job_config.runtime_env_info.uris} "
                f"current one {current_job_config.runtime_env_info.uris}",
            )
        return ray_client_pb2.InitResponse(ok=True)

    @_use_response_cache
    def KVPut(self, request, context=None) -> ray_client_pb2.KVPutResponse:
        with disable_client_hook():
            already_exists = ray.experimental.internal_kv._internal_kv_put(
                request.key, request.value, overwrite=request.overwrite
            )
        return ray_client_pb2.KVPutResponse(already_exists=already_exists)

    def KVGet(self, request, context=None) -> ray_client_pb2.KVGetResponse:
        with disable_client_hook():
            value = ray.experimental.internal_kv._internal_kv_get(request.key)
        return ray_client_pb2.KVGetResponse(value=value)

    @_use_response_cache
    def KVDel(self, request, context=None) -> ray_client_pb2.KVDelResponse:
        with disable_client_hook():
            ray.experimental.internal_kv._internal_kv_del(request.key)
        return ray_client_pb2.KVDelResponse()

    def KVList(self, request, context=None) -> ray_client_pb2.KVListResponse:
        with disable_client_hook():
            keys = ray.experimental.internal_kv._internal_kv_list(request.prefix)
        return ray_client_pb2.KVListResponse(keys=keys)

    def KVExists(self, request, context=None) -> ray_client_pb2.KVExistsResponse:
        with disable_client_hook():
            exists = ray.experimental.internal_kv._internal_kv_exists(request.key)
        return ray_client_pb2.KVExistsResponse(exists=exists)

    def ListNamedActors(
        self, request, context=None
    ) -> ray_client_pb2.ClientListNamedActorsResponse:
        with disable_client_hook():
            actors = ray.util.list_named_actors(all_namespaces=request.all_namespaces)

        return ray_client_pb2.ClientListNamedActorsResponse(
            actors_json=json.dumps(actors)
        )

    def ClusterInfo(self, request, context=None) -> ray_client_pb2.ClusterInfoResponse:
        resp = ray_client_pb2.ClusterInfoResponse()
        resp.type = request.type
        if request.type == ray_client_pb2.ClusterInfoType.CLUSTER_RESOURCES:
            with disable_client_hook():
                resources = ray.cluster_resources()
            # Normalize resources into floats
            # (the function may return values that are ints)
            float_resources = {k: float(v) for k, v in resources.items()}
            resp.resource_table.CopyFrom(
                ray_client_pb2.ClusterInfoResponse.ResourceTable(table=float_resources)
            )
        elif request.type == ray_client_pb2.ClusterInfoType.AVAILABLE_RESOURCES:
            with disable_client_hook():
                resources = ray.available_resources()
            # Normalize resources into floats
            # (the function may return values that are ints)
            float_resources = {k: float(v) for k, v in resources.items()}
            resp.resource_table.CopyFrom(
                ray_client_pb2.ClusterInfoResponse.ResourceTable(table=float_resources)
            )
        elif request.type == ray_client_pb2.ClusterInfoType.RUNTIME_CONTEXT:
            ctx = ray_client_pb2.ClusterInfoResponse.RuntimeContext()
            with disable_client_hook():
                rtc = ray.get_runtime_context()
                ctx.job_id = rtc.job_id.binary()
                ctx.node_id = rtc.node_id.binary()
                ctx.namespace = rtc.namespace
                ctx.capture_client_tasks = (
                    rtc.should_capture_child_tasks_in_placement_group
                )
                ctx.runtime_env = rtc.get_runtime_env_string()
            resp.runtime_context.CopyFrom(ctx)
        else:
            with disable_client_hook():
                resp.json = self._return_debug_cluster_info(request, context)
        return resp

    def _return_debug_cluster_info(self, request, context=None) -> str:
        """Handle ClusterInfo requests that only return a json blob."""
        data = None
        if request.type == ray_client_pb2.ClusterInfoType.NODES:
            data = ray.nodes()
        elif request.type == ray_client_pb2.ClusterInfoType.IS_INITIALIZED:
            data = ray.is_initialized()
        elif request.type == ray_client_pb2.ClusterInfoType.TIMELINE:
            data = ray.timeline()
        elif request.type == ray_client_pb2.ClusterInfoType.PING:
            data = {}
        else:
            raise TypeError("Unsupported cluster info type")
        return json.dumps(data)

    def release(self, client_id: str, id: bytes) -> bool:
        with self.state_lock:
            if client_id in self.object_refs:
                if id in self.object_refs[client_id]:
                    logger.debug(f"Releasing object {id.hex()} for {client_id}")
                    del self.object_refs[client_id][id]
                    return True

            if client_id in self.actor_owners:
                if id in self.actor_owners[client_id]:
                    logger.debug(f"Releasing actor {id.hex()} for {client_id}")
                    self.actor_owners[client_id].remove(id)
                    if self._can_remove_actor_ref(id):
                        logger.debug(f"Deleting reference to actor {id.hex()}")
                        del self.actor_refs[id]
                    return True

            return False

    def release_all(self, client_id):
        with self.state_lock:
            self._release_objects(client_id)
            self._release_actors(client_id)
        # NOTE: Try to actually dereference the object and actor refs.
        # Otherwise dereferencing will happen later, which may run concurrently
        # with ray.shutdown() and will crash the process. The crash is a bug
        # that should be fixed eventually.
        gc.collect()

    def _can_remove_actor_ref(self, actor_id_bytes):
        no_owner = not any(
            actor_id_bytes in actor_list for actor_list in self.actor_owners.values()
        )
        return no_owner and actor_id_bytes not in self.named_actors

    def _release_objects(self, client_id):
        if client_id not in self.object_refs:
            logger.debug(f"Releasing client with no references: {client_id}")
            return
        count = len(self.object_refs[client_id])
        del self.object_refs[client_id]
        if client_id in self.client_side_ref_map:
            del self.client_side_ref_map[client_id]
        if client_id in self.response_caches:
            del self.response_caches[client_id]
        logger.debug(f"Released all {count} objects for client {client_id}")

    def _release_actors(self, client_id):
        if client_id not in self.actor_owners:
            logger.debug(f"Releasing client with no actors: {client_id}")
            return

        count = 0
        actors_to_remove = self.actor_owners.pop(client_id)
        for id_bytes in actors_to_remove:
            count += 1
            if self._can_remove_actor_ref(id_bytes):
                logger.debug(f"Deleting reference to actor {id_bytes.hex()}")
                del self.actor_refs[id_bytes]

        logger.debug(f"Released all {count} actors for client: {client_id}")

    @_use_response_cache
    def Terminate(self, req, context=None):
        if req.WhichOneof("terminate_type") == "task_object":
            try:
                object_ref = self.object_refs[req.client_id][req.task_object.id]
                with disable_client_hook():
                    ray.cancel(
                        object_ref,
                        force=req.task_object.force,
                        recursive=req.task_object.recursive,
                    )
            except Exception as e:
                return_exception_in_context(e, context)
        elif req.WhichOneof("terminate_type") == "actor":
            try:
                actor_ref = self.actor_refs[req.actor.id]
                with disable_client_hook():
                    ray.kill(actor_ref, no_restart=req.actor.no_restart)
            except Exception as e:
                return_exception_in_context(e, context)
        else:
            raise RuntimeError(
                "Client requested termination without providing a valid "
                "terminate_type"
            )
        return ray_client_pb2.TerminateResponse(ok=True)

    def _async_get_object(
        self,
        request: ray_client_pb2.GetRequest,
        client_id: str,
        req_id: int,
        result_queue: queue.Queue,
        context=None,
    ) -> Optional[ray_client_pb2.GetResponse]:
        """Attempts to schedule a callback to push the GetResponse to the
        main loop when the desired object is ready. If there is some failure
        in scheduling, a GetResponse will be immediately returned.
        """
        if len(request.ids) != 1:
            raise ValueError(
                "Async get() must have exactly 1 Object ID. " f"Actual: {request}"
            )
        rid = request.ids[0]
        ref = self.object_refs[client_id].get(rid, None)
        if not ref:
            return ray_client_pb2.GetResponse(
                valid=False,
                error=cloudpickle.dumps(
                    ValueError(
                        f"ClientObjectRef with id {rid} not found for "
                        f"client {client_id}"
                    )
                ),
            )
        try:
            logger.debug("async get: %s" % ref)
            with disable_client_hook():

                def send_get_response(result: Any) -> None:
                    """Pushes a GetResponse to the main DataPath loop to send
                    to the client. This is called when the object is ready
                    on the server side."""
                    try:
                        serialized = dumps_from_server(result, client_id, self)
                        get_resp = ray_client_pb2.GetResponse(
                            valid=True, data=serialized
                        )
                    except Exception as exc:
                        get_resp = ray_client_pb2.GetResponse(
                            valid=False, error=cloudpickle.dumps(exc)
                        )
                    resp = ray_client_pb2.DataResponse(get=get_resp, req_id=req_id)
                    result_queue.put(resp)

                ref._on_completed(send_get_response)
                return None

        except Exception as e:
            return ray_client_pb2.GetResponse(valid=False, error=cloudpickle.dumps(e))

    def GetObject(self, request: ray_client_pb2.GetRequest, context):
        metadata = {k: v for k, v in context.invocation_metadata()}
        client_id = metadata.get("client_id")
        if client_id is None:
            return ray_client_pb2.GetResponse(
                valid=False,
                error=cloudpickle.dumps(
                    ValueError("client_id is not specified in request metadata")
                ),
            )
        return self._get_object(request, client_id)

    def _get_object(self, request: ray_client_pb2.GetRequest, client_id: str):
        objectrefs = []
        for rid in request.ids:
            ref = self.object_refs[client_id].get(rid, None)
            if ref:
                objectrefs.append(ref)
            else:
                return ray_client_pb2.GetResponse(
                    valid=False,
                    error=cloudpickle.dumps(
                        ValueError(
                            f"ClientObjectRef {rid} is not found for client "
                            f"{client_id}"
                        )
                    ),
                )
        try:
            logger.debug("get: %s" % objectrefs)
            with disable_client_hook():
                items = ray.get(objectrefs, timeout=request.timeout)
        except Exception as e:
            return ray_client_pb2.GetResponse(valid=False, error=cloudpickle.dumps(e))
        serialized = dumps_from_server(items, client_id, self)
        return ray_client_pb2.GetResponse(valid=True, data=serialized)

    def PutObject(
        self, request: ray_client_pb2.PutRequest, context=None
    ) -> ray_client_pb2.PutResponse:
        """gRPC entrypoint for unary PutObject"""
        return self._put_object(request.data, request.client_ref_id, "", context)

    def _put_object(
        self,
        data: Union[bytes, bytearray],
        client_ref_id: bytes,
        client_id: str,
        context=None,
    ):
        """Put an object in the cluster with ray.put() via gRPC.

        Args:
            data: Pickled data. Can either be bytearray if this is called
              from the dataservicer, or bytes if called from PutObject.
            client_ref_id: The id associated with this object on the client.
            client_id: The client who owns this data, for tracking when to
              delete this reference.
            context: gRPC context.
        """
        try:
            obj = loads_from_client(data, self)
            with disable_client_hook():
                objectref = ray.put(obj)
        except Exception as e:
            logger.exception("Put failed:")
            return ray_client_pb2.PutResponse(
                id=b"", valid=False, error=cloudpickle.dumps(e)
            )

        self.object_refs[client_id][objectref.binary()] = objectref
        if len(client_ref_id) > 0:
            self.client_side_ref_map[client_id][client_ref_id] = objectref.binary()
        logger.debug("put: %s" % objectref)
        return ray_client_pb2.PutResponse(id=objectref.binary(), valid=True)

    def WaitObject(self, request, context=None) -> ray_client_pb2.WaitResponse:
        object_refs = []
        for rid in request.object_ids:
            if rid not in self.object_refs[request.client_id]:
                raise Exception(
                    "Asking for a ref not associated with this client: %s" % str(rid)
                )
            object_refs.append(self.object_refs[request.client_id][rid])
        num_returns = request.num_returns
        timeout = request.timeout
        try:
            with disable_client_hook():
                ready_object_refs, remaining_object_refs = ray.wait(
                    object_refs,
                    num_returns=num_returns,
                    timeout=timeout if timeout != -1 else None,
                )
        except Exception as e:
            # TODO(ameer): improve exception messages.
            logger.error(f"Exception {e}")
            return ray_client_pb2.WaitResponse(valid=False)
        logger.debug(
            "wait: %s %s" % (str(ready_object_refs), str(remaining_object_refs))
        )
        ready_object_ids = [
            ready_object_ref.binary() for ready_object_ref in ready_object_refs
        ]
        remaining_object_ids = [
            remaining_object_ref.binary()
            for remaining_object_ref in remaining_object_refs
        ]
        return ray_client_pb2.WaitResponse(
            valid=True,
            ready_object_ids=ready_object_ids,
            remaining_object_ids=remaining_object_ids,
        )

    @_use_response_cache
    def Schedule(
        self, task: ray_client_pb2.ClientTask, context=None
    ) -> ray_client_pb2.ClientTaskTicket:
        logger.debug(
            "schedule: %s %s"
            % (task.name, ray_client_pb2.ClientTask.RemoteExecType.Name(task.type))
        )
        try:
            with disable_client_hook():
                if task.type == ray_client_pb2.ClientTask.FUNCTION:
                    result = self._schedule_function(task, context)
                elif task.type == ray_client_pb2.ClientTask.ACTOR:
                    result = self._schedule_actor(task, context)
                elif task.type == ray_client_pb2.ClientTask.METHOD:
                    result = self._schedule_method(task, context)
                elif task.type == ray_client_pb2.ClientTask.NAMED_ACTOR:
                    result = self._schedule_named_actor(task, context)
                else:
                    raise NotImplementedError(
                        "Unimplemented Schedule task type: %s"
                        % ray_client_pb2.ClientTask.RemoteExecType.Name(task.type)
                    )
                result.valid = True
                return result
        except Exception as e:
            logger.exception("Caught schedule exception")
            return ray_client_pb2.ClientTaskTicket(
                valid=False, error=cloudpickle.dumps(e)
            )

    def _schedule_method(
        self, task: ray_client_pb2.ClientTask, context=None
    ) -> ray_client_pb2.ClientTaskTicket:
        actor_handle = self.actor_refs.get(task.payload_id)
        if actor_handle is None:
            raise Exception("Can't run an actor the server doesn't have a handle for")
        arglist, kwargs = self._convert_args(task.args, task.kwargs)
        method = getattr(actor_handle, task.name)
        opts = decode_options(task.options)
        if opts is not None:
            method = method.options(**opts)
        output = method.remote(*arglist, **kwargs)
        ids = self.unify_and_track_outputs(output, task.client_id)
        return ray_client_pb2.ClientTaskTicket(return_ids=ids)

    def _schedule_actor(
        self, task: ray_client_pb2.ClientTask, context=None
    ) -> ray_client_pb2.ClientTaskTicket:
        remote_class = self.lookup_or_register_actor(
            task.payload_id, task.client_id, decode_options(task.baseline_options)
        )

        arglist, kwargs = self._convert_args(task.args, task.kwargs)
        opts = decode_options(task.options)
        if opts is not None:
            remote_class = remote_class.options(**opts)
        with current_server(self):
            actor = remote_class.remote(*arglist, **kwargs)
        self.actor_refs[actor._actor_id.binary()] = actor
        self.actor_owners[task.client_id].add(actor._actor_id.binary())
        return ray_client_pb2.ClientTaskTicket(return_ids=[actor._actor_id.binary()])

    def _schedule_function(
        self, task: ray_client_pb2.ClientTask, context=None
    ) -> ray_client_pb2.ClientTaskTicket:
        remote_func = self.lookup_or_register_func(
            task.payload_id, task.client_id, decode_options(task.baseline_options)
        )
        arglist, kwargs = self._convert_args(task.args, task.kwargs)
        opts = decode_options(task.options)
        if opts is not None:
            remote_func = remote_func.options(**opts)
        with current_server(self):
            output = remote_func.remote(*arglist, **kwargs)
        ids = self.unify_and_track_outputs(output, task.client_id)
        return ray_client_pb2.ClientTaskTicket(return_ids=ids)

    def _schedule_named_actor(
        self, task: ray_client_pb2.ClientTask, context=None
    ) -> ray_client_pb2.ClientTaskTicket:
        assert len(task.payload_id) == 0
        # Convert empty string back to None.
        actor = ray.get_actor(task.name, task.namespace or None)
        bin_actor_id = actor._actor_id.binary()
        self.actor_refs[bin_actor_id] = actor
        self.actor_owners[task.client_id].add(bin_actor_id)
        self.named_actors.add(bin_actor_id)
        return ray_client_pb2.ClientTaskTicket(return_ids=[actor._actor_id.binary()])

    def _convert_args(self, arg_list, kwarg_map):
        argout = []
        for arg in arg_list:
            t = convert_from_arg(arg, self)
            argout.append(t)
        kwargout = {}
        for k in kwarg_map:
            kwargout[k] = convert_from_arg(kwarg_map[k], self)
        return argout, kwargout

    def lookup_or_register_func(
        self, id: bytes, client_id: str, options: Optional[Dict]
    ) -> ray.remote_function.RemoteFunction:
        with disable_client_hook():
            if id not in self.function_refs:
                funcref = self.object_refs[client_id][id]
                func = ray.get(funcref)
                if not inspect.isfunction(func):
                    raise Exception(
                        "Attempting to register function that " "isn't a function."
                    )
                if options is None or len(options) == 0:
                    self.function_refs[id] = ray.remote(func)
                else:
                    self.function_refs[id] = ray.remote(**options)(func)
        return self.function_refs[id]

    def lookup_or_register_actor(
        self, id: bytes, client_id: str, options: Optional[Dict]
    ):
        with disable_client_hook():
            if id not in self.registered_actor_classes:
                actor_class_ref = self.object_refs[client_id][id]
                actor_class = ray.get(actor_class_ref)
                if not inspect.isclass(actor_class):
                    raise Exception(
                        "Attempting to schedule actor that " "isn't a class."
                    )
                if options is None or len(options) == 0:
                    reg_class = ray.remote(actor_class)
                else:
                    reg_class = ray.remote(**options)(actor_class)
                self.registered_actor_classes[id] = reg_class

        return self.registered_actor_classes[id]

    def unify_and_track_outputs(self, output, client_id):
        if output is None:
            outputs = []
        elif isinstance(output, list):
            outputs = output
        else:
            outputs = [output]
        for out in outputs:
            if out.binary() in self.object_refs[client_id]:
                logger.warning(f"Already saw object_ref {out}")
            self.object_refs[client_id][out.binary()] = out
        return [out.binary() for out in outputs]


def return_exception_in_context(err, context):
    if context is not None:
        context.set_details(encode_exception(err))
        # Note: https://grpc.github.io/grpc/core/md_doc_statuscodes.html
        # ABORTED used here since it should never be generated by the
        # grpc lib -- this way we know the error was generated by ray logic
        context.set_code(grpc.StatusCode.ABORTED)


def encode_exception(exception) -> str:
    data = cloudpickle.dumps(exception)
    return base64.standard_b64encode(data).decode()


def decode_options(options: ray_client_pb2.TaskOptions) -> Optional[Dict[str, Any]]:
    if not options.pickled_options:
        return None
    opts = pickle.loads(options.pickled_options)
    assert isinstance(opts, dict)

    return opts


def serve(connection_str, ray_connect_handler=None):
    def default_connect_handler(
        job_config: JobConfig = None, **ray_init_kwargs: Dict[str, Any]
    ):
        with disable_client_hook():
            if not ray.is_initialized():
                return ray.init(job_config=job_config, **ray_init_kwargs)

    ray_connect_handler = ray_connect_handler or default_connect_handler
    server = grpc.server(
        futures.ThreadPoolExecutor(
            max_workers=CLIENT_SERVER_MAX_THREADS,
            thread_name_prefix="ray_client_server",
        ),
        options=GRPC_OPTIONS,
    )
    task_servicer = RayletServicer(ray_connect_handler)
    data_servicer = DataServicer(task_servicer)
    logs_servicer = LogstreamServicer()
    ray_client_pb2_grpc.add_RayletDriverServicer_to_server(task_servicer, server)
    ray_client_pb2_grpc.add_RayletDataStreamerServicer_to_server(data_servicer, server)
    ray_client_pb2_grpc.add_RayletLogStreamerServicer_to_server(logs_servicer, server)
    add_port_to_grpc_server(server, connection_str)
    current_handle = ClientServerHandle(
        task_servicer=task_servicer,
        data_servicer=data_servicer,
        logs_servicer=logs_servicer,
        grpc_server=server,
    )
    server.start()
    return current_handle


def init_and_serve(connection_str, *args, **kwargs):
    with disable_client_hook():
        # Disable client mode inside the worker's environment
        info = ray.init(*args, **kwargs)

    def ray_connect_handler(job_config=None, **ray_init_kwargs):
        # Ray client will disconnect from ray when
        # num_clients == 0.
        if ray.is_initialized():
            return info
        else:
            return ray.init(job_config=job_config, *args, **kwargs)

    server_handle = serve(connection_str, ray_connect_handler=ray_connect_handler)
    return (server_handle, info)


def shutdown_with_server(server, _exiting_interpreter=False):
    server.stop(1)
    with disable_client_hook():
        ray.shutdown(_exiting_interpreter)


def create_ray_handler(address, redis_password):
    def ray_connect_handler(job_config: JobConfig = None, **ray_init_kwargs):
        if address:
            if redis_password:
                ray.init(
                    address=address,
                    _redis_password=redis_password,
                    job_config=job_config,
                    **ray_init_kwargs,
                )
            else:
                ray.init(address=address, job_config=job_config, **ray_init_kwargs)
        else:
            ray.init(job_config=job_config, **ray_init_kwargs)

    return ray_connect_handler


def try_create_gcs_client(
    address: Optional[str], redis_password: Optional[str]
) -> Optional[GcsClient]:
    """
    Try to create a gcs client based on the the command line args or by
    autodetecting a running Ray cluster.
    """
    address = canonicalize_bootstrap_address(address)
    if use_gcs_for_bootstrap():
        return GcsClient(address=address)
    else:
        if redis_password is None:
            redis_password = ray.ray_constants.REDIS_DEFAULT_PASSWORD
        return GcsClient.connect_to_gcs_by_redis_address(address, redis_password)


def main():
    import argparse

    parser = argparse.ArgumentParser()
    parser.add_argument(
        "--host", type=str, default="0.0.0.0", help="Host IP to bind to"
    )
    parser.add_argument("-p", "--port", type=int, default=10001, help="Port to bind to")
    parser.add_argument(
        "--mode",
        type=str,
        choices=["proxy", "legacy", "specific-server"],
        default="proxy",
    )
    parser.add_argument(
        "--address", required=False, type=str, help="Address to use to connect to Ray"
    )
    parser.add_argument(
        "--redis-password",
        required=False,
        type=str,
        help="Password for connecting to Redis",
    )
    parser.add_argument(
        "--metrics-agent-port",
        required=False,
        type=int,
        default=0,
        help="The port to use for connecting to the runtime_env agent.",
    )
    args, _ = parser.parse_known_args()
    setup_logger(ray_constants.LOGGER_LEVEL, ray_constants.LOGGER_FORMAT)

    ray_connect_handler = create_ray_handler(args.address, args.redis_password)

    hostport = "%s:%d" % (args.host, args.port)
    logger.info(f"Starting Ray Client server on {hostport}")
    if args.mode == "proxy":
        server = serve_proxier(
            hostport,
            args.address,
            redis_password=args.redis_password,
            runtime_env_agent_port=args.metrics_agent_port,
        )
    else:
        server = serve(hostport, ray_connect_handler)

    try:
        idle_checks_remaining = TIMEOUT_FOR_SPECIFIC_SERVER_S
        while True:
            health_report = {
                "time": time.time(),
            }

            try:
                if not ray.experimental.internal_kv._internal_kv_initialized():
                    gcs_client = try_create_gcs_client(
                        args.address, args.redis_password
                    )
                    ray.experimental.internal_kv._initialize_internal_kv(gcs_client)
                ray.experimental.internal_kv._internal_kv_put(
                    "ray_client_server",
                    json.dumps(health_report),
                    namespace=ray_constants.KV_NAMESPACE_HEALTHCHECK,
                )
            except Exception as e:
                logger.error(
                    f"[{args.mode}] Failed to put health check " f"on {args.address}"
                )
                logger.exception(e)

            time.sleep(1)
            if args.mode == "specific-server":
                if server.data_servicer.num_clients > 0:
                    idle_checks_remaining = TIMEOUT_FOR_SPECIFIC_SERVER_S
                else:
                    idle_checks_remaining -= 1
                if idle_checks_remaining == 0:
                    raise KeyboardInterrupt()
                if (
                    idle_checks_remaining % 5 == 0
                    and idle_checks_remaining != TIMEOUT_FOR_SPECIFIC_SERVER_S
                ):
                    logger.info(f"{idle_checks_remaining} idle checks before shutdown.")

    except KeyboardInterrupt:
        server.stop(0)


if __name__ == "__main__":
    main()
